@article{Wan2025, 
author = {Haoyang Wan and Yanping Wu and Yihong Yang and Chao Yan and Xiaoxiao Chi and Xuyun Zhang and Shigen Shen},
title = {Lightweight and Privacy-Preserving IoT Service Recommendation Based on Learning to Hash},
year = {2025},
journal = {Tsinghua Science and Technology},
volume = {30},
number = {4},
pages = {1793-1807},
keywords = {service recommendation, lightweight, IoT, privacy protection, learning to hash},
url = {https://www.sciopen.com/article/10.26599/TST.2024.9010064},
doi = {10.26599/TST.2024.9010064},
abstract = {In the Internet of Things (IoT) environment, user-service interaction data are often stored in multiple distributed platforms. In this situation, recommender systems need to integrate the distributed user-service interaction data across different platforms for making a comprehensive recommendation decision, during which user privacy is probably disclosed. Moreover, as user-service interaction records accumulate over time, they significantly reduce the efficiency of recommendations. To tackle these issues, we propose a lightweight and privacy-preserving service recommendation approach named SerRecL2H. In SerRecL2H, we employ Learning to Hash (L2H) to encapsulate sensitive user-service interaction data into less-sensitive user indices, which facilitates identifying users with similar preferences efficiently for accurate recommendations. We then validate the feasibility of our proposed SerRecL2H approach through massive experiments conducted on the popular WS-DREAM dataset. The comparative analysis with other competitive approaches demonstrates that our proposal surpasses other approaches in terms ofrecommendation accuracy and efficiency while protecting user privacy.}
}